Electronic device and system
An electronic device includes a sensor that acquires a pulse wave and a controller that calculates an index based on the acquired pulse wave. The controller estimates the subject's state of glucose metabolism or lipid metabolism using the calculated index.
Latest KYOCERA Corporation Patents:
This application claims priority to and the benefit of Japanese Patent Application No. 2015-091577 filed Apr. 28, 2015, the entire contents of which are incorporated herein by reference.
TECHNICAL FIELDThis disclosure relates to an electronic device and a system that estimate a subject's state of health from measured biological information.
BACKGROUNDConventionally, a subject's (user's) state of health is estimated by measuring a blood component or measuring the blood fluidity. These measurements are made using a blood sample collected from the subject. An electronic device that measures biological information from the wrist or other measured part of a subject is also known. For example, the electronic device disclosed in patent literature 1 (PTL 1) measures a subject's pulse rate while attached to the subject's wrist.
CITATION LIST Patent LiteraturePTL 1: JP 2002-360530 A
SUMMARY Technical ProblemThe pain involved in collecting a blood sample, however, prevents subjects from routinely estimating their own state of health. Furthermore, the electronic device disclosed in PTL 1 only measures pulse and is unable to measure the subject's state of health apart from the pulse.
In light of these considerations, it would be helpful to provide an electronic device and a system that can easily estimate a subject's state of health.
Solution to ProblemAn electronic device according to an embodiment of this disclosure to solve the above problem may include:
a sensor configured to acquire a pulse wave; and
a controller configured to calculate an index based on the acquired pulse wave, such that
the controller estimates a state of glucose metabolism or lipid metabolism of a subject using the calculated index.
An electronic device according to an embodiment of this disclosure may include:
a sensor configured to acquire a pulse wave; and
a controller configured to calculate an index based on the acquired pulse wave, such that
the controller estimates the blood fluidity of a subject using the calculated index.
A system according to an embodiment of this disclosure to solve this problem may include:
a terminal comprising a sensor configured to acquire a pulse wave;
a device configured to estimate a state of glucose metabolism or lipid metabolism of a subject using the acquired pulse wave; and
a notification apparatus configured to notify the subject of the estimated state of glucose metabolism or lipid metabolism.
Advantageous EffectAccording to this disclosure, an electronic device and a system that can easily measure a subject's state of health in a non-invasive manner can be provided.
In the accompanying drawings:
Embodiments of this disclosure are described below in detail with reference to the drawings.
Embodiment 1The electronic device 100 measures the subject's biological information while the electronic device 100 is worn by the subject. The biological information measured by the electronic device 100 is the subject's pulse wave, which is measurable by the measurement unit 120. In this embodiment, as one example, the electronic device 100 is described below as being worn on the subject's wrist and acquiring a pulse wave.
In this embodiment, the wearing portion 110 is a straight, elongated band. Measurement of the pulse wave is performed, for example, in a state in which the subject has wrapped the wearing portion 110 of the electronic device 100 around the wrist. In greater detail, the subject wraps the wearing portion 110 around the wrist so that the back face 120a of the measurement unit 120 is in contact with the measured part and then measures the pulse wave. The electronic device 100 measures the pulse wave of blood flowing through the ulnar artery or the radial artery at the subject's wrist.
The measurement unit 120 includes the back face 120a which contacts the subject's wrist when worn and a front face 120b on an opposite side from the back face 120a. The measurement unit 120 includes an opening 111 in the back face 120a side. In a state in which an elastic body 140 is not compressed, the sensor 130 is supported by the measurement unit 120 with one end of the sensor 130 protruding from the opening 111 at the back face 120a. A pulse pad 132 is provided at the one end of the sensor 130. The one end of the sensor 130 is displaceable in a direction nearly perpendicular to the plane of the back face 120a. For the one end of the sensor 130 to be displaceable, the other end of the sensor 130 is supported by the measurement unit 120 via a support 133.
The one end of the sensor 130 is in contact with the measurement unit 120 through the elastic body 140 and is displaceable. The elastic body 140 is, for example, a spring. The elastic body 140 is not limited to being a spring, however, and can be any other elastic body, such as resin or a sponge.
While not illustrated, a controller, memory, communication interface, power source, notification interface, circuit for causing these components to operate, cable for connecting these components, and the like may be disposed in the measurement unit 120.
The sensor 130 includes an angular velocity sensor 131 that detects displacement of the sensor 130. It suffices for the angular velocity sensor 131 to be capable of detecting the angular displacement of the sensor 130. The type of sensor provided in the sensor 130 is not limited to the angular velocity sensor 131 and may, for example, be an acceleration sensor, an angle sensor, another motion sensor, or a plurality of these sensors.
In
Referring again to
The sensor 130 includes the angular velocity sensor 131, detects pulsation from the measured part, and acquires the pulse wave.
The controller 143 is a processor for overall control and management of the electronic device 100, including, for example, the functional blocks of the electronic device 100. Furthermore, the controller 143 is a processor that calculates an index based on a pulse wave propagation phenomenon using the acquired pulse wave. The controller 143 is configured using a processor such as a central processing unit (CPU) that executes a program prescribing control procedures and a program that calculates the index based on the pulse wave propagation phenomenon. These programs are, for example, stored in a storage medium such as the memory 145. In accordance with the calculated index, the controller 143 estimates a state related to the subject's glucose metabolism, lipid metabolism, or the like. The controller 143 also notifies the notification interface 147 of data.
The power source 144 for example includes a lithium-ion battery and a control circuit for charging and discharging the lithium-ion battery. The power source 144 supplies power to the electronic device 100 overall.
The memory 145 stores programs and data. The memory 145 may include any non-transitory storage medium, such as a semiconductor storage medium and a magnetic storage medium. The memory 145 may also include a plurality of types of storage media. The memory 145 may include a combination of a portable storage medium, such as a memory card, optical disc, or magneto-optical disc, and an apparatus for reading the storage medium. The memory 145 may include a storage device used as a volatile storage area, such as random access memory (RAM). The memory 145 stores a variety of information, programs for causing the electronic device 100 to operate, and the like and also functions as a working memory. The memory 145 may, for example, store the measurement result of the pulse wave acquired by the sensor 130.
The communication interface 146 exchanges a variety of data with an external apparatus by wired or wireless communication. For example, the communication interface 146 communicates with an external apparatus that stores the biological information of the subject to manage the state of health. The communication interface 146 transmits the measurement result of the pulse wave measured by the electronic device 100 and the state of health estimated by the electronic device 100 to the external apparatus.
The notification interface 147 provides notification of information by sound, vibration, images, and the like. The notification interface 147 may include a speaker, a vibrator, and/or a display device such as a liquid crystal display (LCD), an organic electro-luminescence display (OELD), or an inorganic electro-luminescence display (IELD). In this embodiment, for example, the notification interface 147 provides notification of the state of the subject's glucose metabolism or lipid metabolism.
A method for calculating a pulse wave index by using the acquired pulse wave is described with reference to
The pulse wave illustrated in
The pulse wave index quantifies information obtained from the pulse wave. An example of a pulse wave index is PWV, which is calculated in accordance with the difference in propagation time of pulse waves measured at two points, such as the upper arm and ankle, and the distance between the two points. In greater detail, PWV is calculated by synchronously acquiring the pulse wave at two points on an artery (e.g. the upper arm and ankle) and dividing the distance between the two points (L) by the time difference of the pulse waves at the two points (PTT). A further example of a pulse wave index is the reflected wave magnitude PR, which may be calculated as the magnitude PRn of the peak in the pulse wave from the reflected wave or as the average of n values, PRave. A further example of a pulse wave index is the time difference Δt between the forward wave and the reflected wave of the pulse wave, which may be calculated as the time difference Δtn between predetermined pulse beats or as the average of n time differences, Δtave. A further example of a pulse wave index is the AI, which is the result of dividing the magnitude of the reflected wave by the magnitude of the forward wave and is represented as AIn=(PRn−PSn)/(PFn−PSn). AIn is the AI for each pulse beat. As a pulse wave index, AI may, for example, be calculated by measuring the pulse wave for several seconds and calculating the average AIave of the AIn for each pulse beat (n=an integer from 1 to n).
The PWV, the reflected wave magnitude PR, the time difference Δt between the forward wave and the reflected wave, and the AI indices can be used to estimate the state of arteriosclerosis because they change in dependence on the hardness of the blood vessel walls. The PWV increases, for example, if the blood vessel walls are hard. The reflected wave magnitude PR, for example, also increases if the blood vessel walls are hard. The time difference Δt between the forward wave and the reflected wave, for example, decreases if the blood vessel walls are hard. The AI, for example, increases if the blood vessel walls are hard. Furthermore, by using these indices which are based on the pulse wave, the electronic device 100 can estimate the state of arteriosclerosis and also estimate the fluidity (viscosity) of blood. In particular, the electronic device 100 can estimate the change in blood fluidity from the change in indices based on pulse waves acquired for the same measured part of the same subject during a time period (such as several days) over which the state of arteriosclerosis exhibits essentially no change. Here, blood fluidity indicates the ease of blood flow. The PWV, for example, decreases if the blood fluidity is low. The reflected wave magnitude PR, for example, also decreases if the blood fluidity is low. The time difference Δt between the forward wave and the reflected wave, for example, increases if the blood fluidity is low. The AI, for example, decreases if the blood fluidity is low.
In this embodiment, as an example of pulse wave indices, the electronic device 100 calculates the PWV, the reflected wave magnitude PR, the time difference Δt between the forward wave and the reflected wave, and the AI. However, the pulse wave indices are not limited to these examples. For example, the electronic device 100 may use posterior systolic blood pressure as a pulse wave index.
The electronic device 100 acquired the pulse waves before a meal, immediately after the meal, and every 30 minutes after the meal, and calculated a plurality of AI values on the basis of the pulse waves. The AI calculated from the pulse wave acquired before the meal was approximately 0.8. The AI immediately after the meal was lower than before the meal, and the AI reached its lowest value approximately one hour after the meal. The AI gradually increased in the three hours after the meal, until completion of the measurement.
The electronic device 100 can estimate the change in blood fluidity from the change in the calculated AI. The blood fluidity reduces, for example, when red blood cells, white blood cells, and platelets in the blood harden into balls, or when the adhesive force increases. The blood fluidity also reduces, for example, when the moisture content of platelets in the blood decreases. These changes in the blood fluidity depend on the subject's state of health, such as the below-described glycolipid state, heatstroke, dehydration, hypothermia, and the like. Before the subject's state of health becomes critical, the subject can use the electronic device 100 of this embodiment to learn about the subject's own changes in blood fluidity. From the changes in AI before and after a meal as illustrated in
As illustrated in
The electronic device 100 can estimate the state of the subject's glucose metabolism in accordance with the occurrence time of AIP, which is the first detected local minimum of the AI after a meal. For example, the electronic device 100 estimates the blood glucose level as the state of glucose metabolism. As an example of estimating the state of glucose metabolism, the electronic device 100 can infer that the subject has abnormal glucose metabolism (patient with diabetes) when the first detected local minimum AIP of the AI after a meal is detected after a predetermined length of time or longer (for example, approximately 1.5 hours or longer after a meal).
The electronic device 100 can estimate the state of the subject's glucose metabolism in accordance with the difference AIB−AIP between AIB, which is the preprandial AI, and AIP, which is the first detected local minimum of the postprandial AI. As an example of estimating the state of glucose metabolism, the electronic device 100 can infer that the subject has abnormal glucose metabolism (patient with postprandial hyperglycemia) when AIB−AIP is equal to or greater than a predetermined value (for example, 0.5 or higher).
By contrast, the local minimums of the calculated AI were a first local minimum AIP1 detected approximately 30 minutes after the meal and a second local minimum AIP2 detected approximately two hours after the meal. It can be inferred that the first local minimum AIP1 detected approximately 30 minutes after the meal is caused by the above-described blood glucose level after the meal. The occurrence time of the second local minimum AIP2, which was detected approximately two hours after the meal, is nearly coincident with that of the highest neutral lipid level detected approximately two hours after the meal. From this, it can be inferred that the second local minimum AIP2 detected a predetermined length of time or longer after a meal is due to the effect of neutral lipids. Like the blood glucose level, it can be understood that the preprandial and postprandial neutral lipid values are negatively correlated with the AI calculated from the pulse wave. In particular, the local minimum AIP2 of the AI calculated a predetermined length of time or longer (in this embodiment, approximately 1.5 hours or longer) after a meal is correlated with neutral lipids. Therefore, the variation in the subject's neutral lipid level can be estimated from the variation in AI. Furthermore, by measuring the subject's neutral lipid level in advance and determining a correlation with the AI, the electronic device 100 can estimate the subject's neutral lipid level from the calculated AI.
The electronic device 100 can estimate the subject's state of lipid metabolism on the basis of the occurrence time of the second local minimum AIP2 detected a predetermined length of time or longer after a meal. For example, the electronic device 100 estimates the lipid level as the state of lipid metabolism. As an example, the electronic device 100 can infer that the subject has abnormal lipid metabolism (patient with hyperlipidemia) when the second local minimum AIP2 is detected a predetermined length of time or longer (for example, four hours or longer) after a meal.
The electronic device 100 can estimate the subject's state of lipid metabolism in accordance with the difference AIB−AIP2 between the AIB, which is the preprandial AI, and the second local minimum AIP2 detected a predetermined length of time or longer after the meal. As an example, the electronic device 100 can infer that the subject's state of lipid metabolism is abnormal (patient with postprandial hyperlipidemia) when AIB−AIP2 is 0.5 or greater.
From the measurement results illustrated in
The case of neutral lipids has been described as an example of estimating the lipid metabolism in this embodiment, but estimation of the lipid metabolism is not limited to neutral lipids. The lipid level estimated by the electronic device 100 includes, for example, total cholesterol, high-density lipoprotein (HDL) cholesterol, and low-density lipoprotein (LDL) cholesterol. These lipid values also exhibit tendencies similar to the above-described case of neutral lipids.
As illustrated in
Subsequently, the electronic device 100 acquires the pulse wave (step S102). For example, the electronic device 100 determines whether a pulse wave of predetermined amplitude or higher has been obtained during a predetermined measurement time (for example, five seconds). If a pulse wave of predetermined amplitude or higher has been obtained, the process proceeds to step S103. If a pulse wave of predetermined amplitude or higher has not been obtained, step S102 is repeated (these steps are not illustrated).
From the pulse wave acquired in step S102, the electronic device 100 calculates the AI as a pulse wave index and stores the AI in the memory 145 (step S103). The electronic device 100 may calculate the average AIave from the AIn (n=an integer from 1 to n) for each of a predetermined number of pulse beats (for example, three beats) and use the average AIave as the AI. Alternatively, the electronic device 100 may calculate the AI for a specific pulse beat.
The AI may be calculated by correcting the AI in accordance, for example, with the pulse rate PR, the pulse pressure (PF−PS), body temperature, the temperature of the measured part, and the like. Pulse and AI are known to be negatively correlated, as are pulse pressure and AI. Temperature and AI are known to be positively correlated. When correcting the AI, for example the electronic device 100 calculates the pulse and the pulse pressure in addition to the AI in step S103. For example, the electronic device 100 may include a temperature sensor in the sensor 130 and may acquire the temperature of the measured part when acquiring the pulse wave in step S102. The AI is corrected by substituting the acquired pulse, pulse pressure, temperature, and the like into a correction formula derived in advance.
Subsequently, the electronic device 100 compares the AI standard value acquired in step S101 with the AI calculated in step S103 and estimates the fluidity of the subject's blood (step S104). When the calculated AI is greater than the AI standard value (YES), then the electronic device 100 infers that the blood fluidity is high and for example provides a notification that “the blood is thin” (step S105). When the calculated AI is not greater than the AI standard value (NO), then the electronic device 100 infers that the blood fluidity is low and for example provides a notification that “the blood is thick” (step S106).
Subsequently, the electronic device 100 confirms with the subject whether to estimate the state of glucose metabolism and lipid metabolism (step S107). When it is confirmed in step S107 that the state of glucose metabolism and lipid metabolism is not to be estimated (NO), the electronic device 100 terminates the process. When it is confirmed in step 207 that the state of glucose metabolism and lipid metabolism is to be estimated (YES), the electronic device 100 confirms whether the calculated AI was acquired before a meal or after a meal (step S108). When acquisition was not after a meal, i.e. was before a meal (NO), the process returns to step S102, and the next pulse wave is acquired. When acquisition was after a meal (YES), the electronic device 100 stores the acquisition time of the pulse wave corresponding to the calculated AI (step S109). When continuing to acquire pulse waves (NO in step S110), the process returns to step S102, and the next pulse wave is acquired. When terminating pulse wave measurement (YES in step S110), the process proceeds to step S111 and beyond, and the electronic device 100 estimates the subject's state of glucose metabolism and lipid metabolism.
Subsequently, the electronic device 100 extracts the local minimums and the times thereof from a plurality of AI values calculated in step S104 (step S111). For example, in the case of the AI values illustrated by the solid curve in
Subsequently, the electronic device 100 estimates the subject's state of glucose metabolism from the first local minimum AIN and the time thereof (step S112). Furthermore, the electronic device 100 estimates the subject's state of lipid metabolism from the second local minimum AIP2 and the time thereof (step S113). Examples of estimating the subject's state of glucose metabolism and lipid metabolism follow the examples described above in relation to
Subsequently, the electronic device 100 provides notification of the estimation result from step S112 and step S113 (step S114) and terminates the process illustrated in
In the above embodiment, the electronic device 100 can estimate the fluidity of the subject's blood and the state of glucose metabolism and lipid metabolism from an index based on the subject's pulse wave. Therefore, the electronic device 100 can estimate the fluidity of the subject's blood and the state of glucose metabolism and lipid metabolism in a non-invasive manner and in a short time.
In the above embodiment, the electronic device 100 can estimate the state of glucose metabolism and estimate the state of lipid metabolism from the extreme values of indices based on the subject's pulse waves and the times thereof. Therefore, the electronic device 100 can estimate the subject's state of glucose metabolism and lipid metabolism in a non-invasive manner and in a short time.
In the above embodiment, the electronic device 100 can, for example, estimate the subject's state of glucose metabolism and lipid metabolism using an index based on the subject's pulse wave before a meal (when fasting) as a standard. Therefore, the electronic device 100 can accurately estimate the fluidity of the subject's blood and the state of glucose metabolism and lipid metabolism without regard for the blood vessel diameter and blood vessel hardness, which do not exhibit short-term change.
In the above embodiment, the electronic device 100 can estimate the subject's blood glucose level and lipid level in a non-invasive manner and in a short time by calibrating the index based on the subject's pulse wave with the blood glucose level and lipid level.
Embodiment 2According to Embodiment 1, an example of an electronic device 100 which estimates a subject's glucose metabolism and lipid metabolism in accordance with the AI calculated from a pulse wave as a pulse wave index is described. In Embodiment 2, an example of an electronic device 100 which estimates a subject's glucose metabolism in accordance with estimation formulas determined using regression analysis is described. In this embodiment, the electronic device 100 estimates the blood glucose level as the subject's glucose metabolism. Since the configuration of the electronic device 100 according to this embodiment is similar to that of Embodiment 1, a description of the configuration is omitted.
The electronic device 100 stores estimation formulas for estimating the blood glucose level based on pulse wave in the memory 145, for example, in advance. The electronic device 100 estimates the blood glucose level using these estimation formulas.
First, estimation theory related to estimating the blood glucose level on the basis of a pulse wave is described. As a result of an increase in the blood glucose level after a meal, the blood fluidity reduces (viscosity increases), blood vessels dilate, and the amount of circulating blood increases. Vascular dynamics and hemodynamics are determined so as to balance these states. The reduction in blood fluidity occurs, for example, because of an increase in the viscosity of blood plasma or a reduction in the deformability of red blood cells. Dilation of blood vessels occurs for reasons such as secretion of insulin, secretion of digestive hormones, and a rise in body temperature. When blood vessels dilate, the pulse rate increases to suppress a reduction in blood pressure. Furthermore, the increase in the amount of circulating blood compensates for blood consumption for digestion and absorption. Changes, in vascular dynamics and hemodynamics from before to after a meal due to these factors is also reflected in the pulse wave. Therefore, the electronic device 100 can acquire the pulse wave and estimate the blood glucose level based on the change in the acquired pulse wave.
Estimation formulas for estimating the blood glucose level in accordance with the above estimation theory can be derived by performing regression analysis on sample data representing preprandial/postprandial blood glucose levels and pulse waves obtained from a plurality of subjects. The subject's blood glucose level can be estimated by applying the derived estimation formulas to the subject's pulse wave index at the time of estimation. If the estimation formulas are derived in particular by performing regression analysis using sample data for which variation in the blood glucose level is close to a normal distribution, the blood glucose level of the subject being tested can be estimated either before or after a meal.
The above-described rising index SI, the AI, and the pulse rate PR, along with coefficients related to pulse wave characteristics used to derive the estimation formula by regression analysis, such as the Fourier coefficient and the like, are referred to as characteristic coefficients in this disclosure. The electronic device 100 uses estimation formulas based on the characteristic coefficients of a pulse wave as the pulse wave index to estimate the subject's glucose metabolism.
Here, a method for deriving the estimation formulas for the case of the electronic device 100 estimating the subject's glucose metabolism in accordance with characteristic coefficients of a pulse wave is described. Here, an example of using the Fourier coefficients as characteristic coefficients is described. The estimation formulas need not be derived by the electronic device 100 and may be derived in advance using another computer. In this disclosure, the device that derives the estimation formulas is referred to as an estimation formula derivation apparatus. The derived estimation formulas are, for example, stored in the memory 145 in advance, before the subject estimates the blood glucose level with the electronic device 100.
First, during derivation of the estimation formulas, information on the subject's preprandial pulse wave and blood glucose level, as measured respectively by a pulse wave meter and a blood glucose meter, is input into the estimation formula derivation apparatus (step S201).
Information on the subject's postprandial pulse wave and blood glucose level, as measured respectively by a pulse wave meter and a blood glucose meter, is also input into the estimation formula derivation apparatus (step S202).
The estimation formula derivation apparatus determines whether the number of samples in the sample data input in step S201 and step S202 is equal to or greater than the number of samples, N, sufficient for regression analysis (step S203). When it is determined that the number of samples is fewer than N (NO), the estimation formula derivation apparatus repeats step S201 and step S202 until the number of samples becomes equal to or greater than N. Conversely, when it is determined that the number of samples is greater than or equal to N (YES), the estimation formula derivation apparatus proceeds to step S204 and calculates the estimation formulas.
During calculation of the estimation formulas, the estimation formula derivation apparatus performs FFT analysis on the input preprandial and postprandial pulse waves (step S204). Based on the FFT analysis, the estimation formula apparatus extracts the fundamental and harmonic components corresponding to the Fourier coefficients.
The estimation formula derivation apparatus also calculates the pulse rate of each subject on the basis of the input pulse waves (step S205).
The estimation formula derivation apparatus then performs regression analysis (step S206). The regression analysis may be performed with any suitable method, such as partial least squares regression. The dependent variable in the regression analysis is the blood glucose level, including the preprandial and postprandial blood glucose level. The explanatory variable in the regression analysis is calculated in accordance with the preprandial and postprandial Fourier coefficients (fundamental and harmonic components) and pulse rate. In greater detail, the estimation formula derivation apparatus standardizes the fundamental and harmonic components and multiplies by the pulse rate to calculate the explanatory variable.
The estimation formula derivation apparatus derives estimation formulas for estimating the blood glucose level on the basis of the result of regression analysis (step S207). An example of estimation formulas for estimating the blood glucose level is indicated below by Formula (1) and Formula (2).
GLa=−26.9+PRb×(−1.61×Sb1+0.59×Sb2+2.89×Sb3+4.31×Sb4−1.66×Sb5)+PRa×(2.86×Sa1−1.2×Sa2−2.14×Sa3−1.4×Sa4+11.29×Sa5) (1)
GLb=91.2+PRb×(−0.36×Sb1+0.42×Sb2+0.31×Sb3−0.28×Sb4+1.67×Sb5)+PRa×(0.49×Sa1−0.29×Sa2−0.14×Sa3−1.23×Sa4−0.21×Sa5) (2)
In Formulas (1) and (2), GLa is the postprandial blood glucose level, and GLb is the preprandial blood glucose level. PRa is the postprandial pulse rate, and PRb is the preprandial pulse rate. Sb1 to Sb5 are first order to fifth order Fourier coefficients obtained by a FFT analysis of the preprandial pulse wave. Sa1 to Sa5 are first order to fifth order Fourier coefficients obtained by a FFT analysis of the postprandial pulse wave.
An example of calculating the explanatory variable on the basis of the Fourier coefficients and the pulse rate has been described with reference to
Next, a process for estimating the subject's blood glucose level using estimation formulas is described.
First, the electronic device 100 measures the subject's preprandial pulse wave in response to operation by the subject (step S301).
After the subject eats a meal, the electronic device 100 also measures the subject's postprandial pulse wave in response to operation by the subject (step S302).
The electronic device 100 then calculates the subject's preprandial and postprandial pulse rate on the basis of the measured pulse wave (step S303).
The electronic device 100 performs FFT analysis on the subject's preprandial and postprandial pulse wave on the basis of the measured pulse wave (step S304). The electronic device 100 calculates the characteristic coefficients based on the FFT analysis.
The electronic device 100 estimates the subject's preprandial and postprandial blood glucose level by, for example, substituting the characteristic coefficients calculated in step S304 into Formula (1) and Formula (2) above (step S305). The subject is notified, for example, of the estimated blood glucose level by the notification interface 147 of the electronic device 100.
During derivation of the estimation formulas in
In this way, the electronic device 100 can estimate the subject's glucose metabolism in a non-invasive manner and in a short time.
Embodiment 3According to Embodiment 2, an example of deriving estimation formulas by performing regression analysis on the basis of sample data for preprandial and postprandial blood glucose level and pulse wave was described. In Embodiment 3, an example of deriving estimation formulas on the basis of sample data for preprandial and postprandial blood glucose level and postprandial pulse wave is described. Description of points that are similar to those of Embodiment 2 is omitted as appropriate.
During derivation of the estimation formulas according to this embodiment, information on the subject's preprandial blood glucose level, as measured by a blood glucose meter, is input into the estimation formula derivation apparatus (step S401). Step S402 and step S403 are similar to step S202 and step S203 respectively of
When it is determined that the number of samples is equal to or greater than N (YES), the estimation formula derivation apparatus performs FFT analysis on the input postprandial pulse wave (step S404). Based on the FFT analysis, the estimation formula derivation apparatus extracts the fundamental and harmonic components corresponding to the Fourier coefficients.
The estimation formula derivation apparatus also calculates the pulse rate of each subject on the basis of the input pulse wave (step S405).
The estimation formula derivation apparatus then performs regression analysis (step S406). The dependent variable in the regression analysis in this embodiment is the blood glucose level, including the preprandial and postprandial blood glucose level. The explanatory variable in the regression analysis in this embodiment is calculated on the basis of the postprandial Fourier coefficients (fundamental and harmonic components) and pulse rate.
The estimation formula derivation apparatus derives estimation formulas for estimating the blood glucose level on the basis of the result of regression analysis (step S407). An example of estimation formulas for estimating the blood glucose level as derived using the flow illustrated in
GLa=−39.7+PRa×(2.38×Sa1−0.91×Sa2−1.27×Sa3−3.7×Sa4+6.22×Sa5) (3)
GLb=81.4+PRa×(0.22×Sa1−0.22×Sa2−0.2×Sa3−1.66×Sa4+2.27×Sa5) (4)
Next, the process for estimating the subject's blood glucose level using estimation formulas is described.
After the subject eats a meal, the electronic device 100 measures the subject's postprandial pulse wave in response to operation by the subject (step S501).
The electronic device 100 calculates the subject's preprandial and postprandial pulse rate on the basis of the measured pulse wave (step S502).
The electronic device 100 performs FFT analysis on the subject's postprandial pulse wave on the basis of the measured pulse wave (step S503). The electronic device 100 calculates the characteristic coefficients based on the FFT analysis.
The electronic device 100 estimates the subject's preprandial and postprandial blood glucose level by, for example, substituting the characteristic coefficients calculated in step S503 into Formula (3) and Formula (4) above (step S504). The subject is notified, for example, of the estimated blood glucose level by the notification interface 147 of the electronic device 100.
In this way, if sample data for which regression analysis is possible can be acquired, the electronic device 100 can estimate the subject's glucose metabolism in a non-invasive manner and in a short time using the estimation formulas, even in cases where the estimation formulas are derived on the basis of the postprandial pulse wave.
Embodiment 4According to Embodiments 2 and 3, examples of the electronic device 100 estimating the subject's blood glucose level (glucose metabolism) have been described. In Embodiment 4, an example of the electronic device 100 estimating the subject's lipid metabolism is described. In this embodiment, the electronic device 100 estimates the lipid level as the subject's lipid metabolism. Here, the lipid level includes neutral lipids, total cholesterol, HDL cholesterol, LDL cholesterol, and the like. In the description of this embodiment, description of points that are similar to Embodiment 2 is omitted as appropriate.
The electronic device 100 stores estimation formulas for estimating the lipid level on the basis of the pulse wave in the memory 145, for example, in advance. The electronic device 100 estimates the lipid level using these estimation formulas.
The estimation theory related to estimating the lipid level on the basis of a pulse wave is similar to the estimation theory for blood glucose level described in Embodiment 2. In other words, unlike the preprandial lipid level in the blood, a change in the postprandial lipid level in the blood is also reflected in a change in the pulse wave. Therefore, the electronic device 100 can acquire the pulse wave and estimate the lipid level based on the change in the acquired pulse wave.
Estimation formulas for estimating the lipid level can be derived by performing regression analysis on sample data representing preprandial lipid levels and pulse waves obtained from a plurality of subjects. By applying the derived estimation formulas to the index based on the subject's pulse wave at the time of estimation, the subject's lipid level can be estimated.
During derivation of the estimation formulas, first, information on the preprandial pulse wave and lipid level of the subject, as measured respectively by a pulse wave meter and a lipid measurement apparatus, is input into the estimation formula derivation apparatus (step S601). At this time, the age of the subject is also input.
The estimation formula derivation apparatus determines whether the number of samples in the sample data input in step S601 is equal to or greater than the number of samples, N, sufficient for regression analysis (step S602). When it is determined that the number of samples is fewer than N (NO), the estimation formula derivation apparatus repeats step S601 until the number of samples becomes equal to or greater than N. Conversely, when it is determined that the number of samples is greater than or equal to N (YES), the estimation formula derivation apparatus proceeds to step S603 and calculates the estimation formulas.
During calculation of the estimation formulas, the estimation formula derivation apparatus analyzes the input preprandial pulse wave (step S603). For example, in greater detail, the estimation formula derivation apparatus analyzes the rising index SI, the AI, and/or the pulse rate PR of the pulse wave.
The estimation formula derivation apparatus then performs regression analysis (step S604). The objective variable in the regression analysis is the preprandial lipid level. The explanatory variables in the regression analysis are, for example, the age input in step S601 and the rising index SI, the AI, and/or the pulse rate PR of the preprandial pulse wave analyzed in step S603. The explanatory variables may, for example, also be Fourier coefficients calculated as the result of an FFT analysis.
The estimation formula derivation apparatus derives estimation formulas for estimating the lipid level on the basis of the result of regression analysis (step S605). An example of estimation formulas for estimating the lipid level is indicated below by Formulas (5) through (8).
HDL=−14.5+0.14×age−0.37×PR+0.07×AI−0.42×SI (5)
LDL=−241.4+0.34×age+0.79×PR+3.18×AI−1.69×SI (6)
Chol=−185.1+1.01×age+0.35×PR+2.41×AI−2.01×SI (7)
Tg=383+2.53×age−0.27×PR−4.59×AI+0.67×SI (8)
In Formulas (5) through (8), HDL represents HDL cholesterol, LDL represents LDL cholesterol, Chol represents total cholesterol, and Tg represents the numerical value of neutral lipids. Also, age indicates the age of the subject.
Next, a process for estimating the lipid level of the subject using estimation formulas is described.
First, the age of the subject is input to the electronic device 100 in response to an operation by the subject (step S701).
After the subject eats a meal, the electronic device 100 also measures, at a predetermined time, the postprandial pulse wave of the subject, in response to an operation by the subject (step S702). Here, the predetermined time after the meal is any time at which the change in lipid level due to a meal is reflected in a change in pulse wave. The predetermined time after the meal may be a time excluding the time immediately after completion of the meal, at which the blood glucose level rises.
The electronic device 100 then analyzes the measured pulse wave (step S703). For example, in greater detail, the electronic device 100 analyzes the rising index SI, the AI, and/or the pulse rate PR related to the measured pulse wave.
The electronic device 100 estimates the subject's lipid level by, for example, substituting the rising index SI, the AI, and/or the pulse rate PR analyzed in step S703 and the age of the subject into Formulas (5) through (8) above (step S704). The subject is notified, for example, of the estimated lipid level by the notification interface 147 of the electronic device 100.
In this way, the electronic device 100 can estimate the subject's lipid metabolism in a non-invasive manner and in a short time.
In the system according to this embodiment, the electronic device 100 and the mobile terminal 150 have been illustrated as connected over the communication network via the server 151. However, systems according to this disclosure are not limited to this configuration. The electronic device 100 and the mobile terminal 150 may be connected directly over the communication network without use of the server 151.
Characteristic embodiments have been described for a complete and clear disclosure. The appended claims, however, are not limited to the above embodiments and are to be construed as encompassing all of the possible modifications and alternate configurations that a person of ordinary skill in the art could make within the scope of the fundamental features indicated in this disclosure.
For example, in the above embodiments, cases where the sensor 130 is provided with the angular velocity sensor 131 has been described, but the electronic device 100 according to this disclosure is not limited to this case. The sensor 130 may be provided with an optical pulse wave sensor constituted by an optical emitter and an optical detector or may be provided with a pressure sensor. Furthermore, the electronic device 100 is not limited to being worn on the wrist. It suffices for the sensor 130 to be placed on an artery, such as on the neck, ankle, thigh, ear, or the like.
For example, in Embodiment 1, the state of glucose metabolism and lipid metabolism of a subject is estimated using a first extreme value and second extreme value of a pulse wave index and the times thereof, but an electronic device according to this disclosure is not limited to this case. In some cases, only one extreme value or no extreme value may be observed, and the state of glucose metabolism and lipid metabolism of the subject may be estimated on the basis of the overall trend (for example, integral value, Fourier transform, or the like) in the temporal change in the calculated pulse wave index. Furthermore, instead of extracting the extreme values of the pulse wave index, the state of glycolipid metabolism of the subject may be estimated on the basis of a time range over which the pulse wave index becomes equal to or less than a predetermined.
For example, in the above embodiments, cases where estimation of preprandial and postprandial fluidity of blood has been described, but the electronic device 100 according to this disclosure is not limited to these cases. The electronic device according to this disclosure may estimate blood fluidity before or after exercise and during exercise, or may estimate the blood fluidity before or after bathing and during bathing.
REFERENCE SIGNS LIST
-
- 100 Electronic device
- 110 Wearing portion
- 120 Measurement unit
- 120a Back face
- 120b Front face
- 111 Opening
- 130 Sensor
- 131 Angular velocity sensor
- 132 Pulse pad
- 133 Support
- 140 Elastic body
- 143 Controller
- 144 Power source
- 145 Memory
- 146 Communication interface
- 147 Notification interface
- 150 Mobile terminal
- 151 Server
Claims
1. An electronic device comprising:
- a sensor configured to acquire a pulse wave; and
- a controller configured to calculate an index based on a feature of a reflected wave of the acquired pulse wave, the feature of the reflected wave including at least one of, a magnitude of the reflected wave, a time difference between the acquired pulse wave and the reflected wave, or an augmentation index based on a ratio between a magnitude of the acquired pulse wave and a magnitude of the reflected wave, wherein
- the controller estimates a state of glucose metabolism or lipid metabolism of a subject using the calculated index.
2. The electronic device of claim 1, wherein as the index based on the acquired pulse wave, the controller calculates at least one of pulse wave velocity or posterior systolic blood pressure using the acquired pulse wave and estimates the state of glucose metabolism or lipid metabolism of the subject.
3. The electronic device of claim 1, wherein as the index based on the acquired pulse wave, the controller calculates a characteristic coefficient of the acquired pulse wave and estimates the state of glucose metabolism or lipid metabolism of the subject.
4. The electronic device of claim 1, wherein the controller estimates a blood glucose level as the glucose metabolism of the subject or estimates a lipid level as the lipid metabolism of the subject.
5. The electronic device of claim 1, wherein
- the sensor acquires pulse waves at a plurality of times, and
- the controller calculates a plurality of indices corresponding to the pulse waves acquired at the plurality of times and estimates the state of glucose metabolism or lipid metabolism of the subject in accordance with change over time of the calculated indices.
6. The electronic device of claim 5, wherein the sensor acquires the pulse waves at the plurality of times, and the plurality of times includes at least before a meal and after a meal.
7. The electronic device of claim 6, wherein the controller extracts extreme values from the index for after the meal and estimates the state of glucose metabolism of the subject in accordance with a first extreme value occurring earliest within a predetermined length of time after the meal and an occurrence time of the first extreme value.
8. The electronic device of claim 6, wherein the controller extracts extreme values from the index for after the meal and estimates the state of lipid metabolism of the subject in accordance with a second extreme value occurring after a predetermined length of time elapses after the meal and an occurrence time of the second extreme value.
9. The electronic device of claim 6, wherein the controller extracts extreme values from the index for after the meal, estimates the state of glucose metabolism of the subject in accordance with a first extreme value occurring earliest after the meal and an occurrence time of the first extreme value, and estimates the state of lipid metabolism of the subject in accordance with a second extreme value occurring after the first extreme value and an occurrence time of the second extreme value.
10. An electronic device comprising:
- a sensor configured to acquire a pulse wave; and
- a controller configured to calculate an index based on a feature of a reflected wave of the acquired pulse wave, the feature of the reflected wave including at least one of, a magnitude of the reflected wave, a time difference between the acquired pulse wave and the reflected wave, or an augmentation index based on a ratio between a magnitude of the acquired pulse wave and a magnitude of the reflected wave, wherein
- the controller estimates the blood fluidity of a subject using the calculated index.
11. The electronic device of claim 1, wherein the sensor comprises at least an acceleration sensor configured to detect acceleration or an angular velocity sensor configured to detect angular velocity.
12. A system comprising:
- a terminal comprising a sensor configured to acquire a pulse wave;
- a device configured to estimate a state of glucose metabolism or lipid metabolism of a subject using a feature of a reflected wave of the acquired pulse wave, the feature of the reflected wave including at least one of, a magnitude of the reflected wave, a time difference between the acquired pulse wave and the reflected wave, or an augmentation index based on a ratio between a magnitude of the acquired pulse wave and a magnitude of the reflected wave; and
- a notification apparatus configured to notify the subject of the estimated state of glucose metabolism or lipid metabolism.
8251910 | August 28, 2012 | Saito et al. |
20020188210 | December 12, 2002 | Aizawa |
20080275317 | November 6, 2008 | Cho et al. |
20090306523 | December 10, 2009 | Saito et al. |
20100222652 | September 2, 2010 | Cho et al. |
20120059237 | March 8, 2012 | Amir |
20160213296 | July 28, 2016 | Kikuchi et al. |
101495033 | July 2009 | CN |
2047793 | April 2009 | EP |
H07-37104 | July 1995 | JP |
2002-360530 | December 2002 | JP |
2008-183256 | August 2008 | JP |
2010-537751 | December 2010 | JP |
2009-0127517 | December 2009 | KR |
2015/037281 | March 2015 | WO |
- Choi, et al. “The Association of Brachial-Ankle Pulse Wave Velocity with 30-Minute Post-Challenge Plasma Glucose Levels in Korean Adults with No History of Type 2 Diabetes,” Korean Diabetes J 2010;34:287-293 (Year: 2008).
- International Search Report issued in PCT/JP2016/002026; dated Jul. 5, 2016.
- Written Opinion issued in PCT/JP2016/002026; dated Jul. 5, 2016.
- Makoto Sato et al.; “Behavior Recognition Using Biological Data and Acceleration Data”; 65th Information Process Conference (in 2003); a collection of lecture papers of national convention (5); Mar. 25, 2003, pp. 5-239-5-242.
- Jerry R. Greenfield et al., Effect of postprandial insulinemia and insulin resistance on measurement of arterial stiffness (augmentation index), International Journal of Cardiology, 2007, pp. 50-56, Elsevier.
Type: Grant
Filed: Apr 14, 2016
Date of Patent: Dec 8, 2020
Patent Publication Number: 20180116571
Assignee: KYOCERA Corporation (Kyoto)
Inventor: Hiromi Ajima (Kawasaki)
Primary Examiner: Eric J Messersmith
Application Number: 15/568,319
International Classification: A61B 5/145 (20060101); A61B 5/00 (20060101); A61B 5/02 (20060101); A61B 5/026 (20060101); A61B 5/024 (20060101); A61B 5/1455 (20060101); A61B 5/021 (20060101);